基于MPD的高频共振在油水层识别中的应用

Pingping Zhang, D. Hou, Xugang Ma, Yichuan Wang
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引用次数: 0

摘要

如何有效地识别油水层一直是油气指标研究中的难题。一般认为,油层在频谱上具有低频增强和高频衰减的特点。但在实际应用中,较厚的水层的振幅和频率特性与油层非常相似,这使得两者难以区分。本文提出了一种基于匹配追踪分解(MPD)的油水层识别新方法。首先,采用高精度MPD方法对地震资料进行时频分析。通过对不同频率瞬时幅值的分析,认为油层和水层在频谱上的主要差异在高频段,油层在该频段表现出较强的幅值特征。其次,基于高频共振(HFR),从高频范围的分频数据中计算出高频亮点属性;在这个新属性中,水层被油层的强振幅所抑制。最后,将新属性与地震资料的- 90度相移相乘,得到HCI的结果。正演模拟试验和在渤海油田的实际应用表明,与常规的低频和高频衰减方法相比,高频亮点法在抑制水层和识别薄油层方面更有效。
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The Application of High Frequency Resonance Based on MPD in the Identification of Oil and Water Layer
How to effectively identify the oil and water layer has been a difficult problem in the hydrocarbon indicator (HCI). It is generally believed that the oil layer has the characteristics of low frequency enhancement and high frequency attenuation on the frequency spectrum. But in the actual application, the amplitude and frequency characteristics of the thicker water layer are very similar to that of the oil layer, which makes it hard to distinguish one from the other. In this paper, in order to identify the oil and water layer, a new method basis on matching pursuit decomposition (MPD) is proposed. Firstly, the time-frequency analysis of seismic data is carried out though high precision MPD method. Through analyzing the instantaneous amplitude at different frequencies, we consider that the main difference of the oil and water layer in the frequency spectrum is at the high frequency band where the oil layer shows relatively strong amplitude characteristics. Secondly, base on the high frequency resonance (HFR), the high frequency bright spot attribute is calculated from the frequency division data in the high frequency range. In this new attribute, the water layer is suppressed by the strong amplitude of the oil layer. Finally, the results of the HCI are obtained by multiplying the new attribute with the −90 degree phase shift of the seismic data. The forward modeling test and actual application in Bohai oilfield show that the high frequency bright spot method is more effective in suppressing the water layer and identifying thinner oil layers compared with the conventional low frequency and high frequency attenuation methods of HCI.
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